Author(s) | Miao. Y., Soltani. M.N., Hajizadeh. A. |
Journal | Applied Sciences |
Year | 2022 |
DOI / Link | doi.org/10.3390/app12157392 |
Keywords | Wind farm, Model-free wake, Machine learning, Fatigue load |
Wake steering control can significantly improve the overall power production of wind farms. However, it also increases fatigue damage on downstream wind turbines. Therefore, optimizing fatigue loads in wake steering control has become a hot research topic. Accurately predicting farm fatigue loads has always been challenging. The current interpolation method for farm-level fatigue loads estimation is also known as the look-up table (LUT) method. However, the LUT method is less accurate because it is challenging to map the highly nonlinear characteristics of fatigue load. This paper proposes a machine-learning algorithm based on the Gaussian process (GP) to predict the farm-level fatigue load under yaw misalignment. Firstly, a series of simulations with yaw misalignment were designed to obtain the original load data, which considered the wake interaction between turbines. Secondly, the rainflow counting and Palmgren miner rules were introduced to transfer the original load to damage equivalent load. Finally, the GP model trained by inputs and outputs predicts the fatigue load. GP has more accurate predictions because it is suitable for mapping the nonlinear between fatigue load and yaw misalignment. The case study shows that compared to LUT, the accuracy of GP improves by 17% (π πππΈ) and 0.6% (ππ΄πΈ) at the blade root edgewise moment and 51.87% (π πππΈ) and 1.78% (ππ΄πΈ) at the blade root flapwise moment.